利用机器学习预测食品生物聚合物混合物的流变参数

IF 11 1区 农林科学 Q1 CHEMISTRY, APPLIED
Julie Frost Dahl , Miek Schlangen , Atze Jan van der Goot , Milena Corredig
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引用次数: 0

摘要

预测用植物蛋白配料通过水热加工制备的食品的特性仍然具有挑战性。本研究利用成分数据,通过机器学习预测植物基生物聚合物混合物的流变特性。使用一系列基于黄豌豆和蚕豆蛋白成分的配方制备了蛋白质浓度为 14% 至 43% 的样品。这些配方与 0-13% 的多糖(即玉米淀粉、果胶、纤维素和卡拉胶)混合,最终水分在 40% 到 72% 之间。这些混合物适用于高水分挤压加工。流变学数据是在封闭式空腔流变仪中,利用小、中、大振幅振荡剪切力收集的。对来自 140 种独特配方的数据进行了聚类分析,以确定数据集中的模式,并进行了变量重要性分析,以确定关键输入特征和相关输出流变参数。随后,对多个监督机器学习回归模型进行了评估,其中单输出随机森林回归模型可根据成分输入有效预测线性粘弹性体系中的参数,但不能预测非线性体系中的参数。使用多输出随机森林回归法,以大变形参数作为输入,可以准确预测非线性机制中的参数。结果凸显了流变参数之间存在的相互依存关系,清楚地证明了使用机器学习作为工具预测植物基生物聚合物混合物流变特性的优势,并突出了数据中的趋势,这可能会加深对高水分挤压过程中成分对结构形成影响的机理理解。
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Predicting rheological parameters of food biopolymer mixtures using machine learning

Predicting rheological parameters of food biopolymer mixtures using machine learning
Predicting the properties of foods prepared with plant protein ingredients through hydrothermal processing remains challenging. This study uses compositional data to predict rheological properties of plant-based biopolymer mixes using machine learning. Samples containing protein concentrations ranging from 14 to 43 % were prepared using a range of formulations, based on yellow pea and faba bean protein ingredients. The formulations were mixed with 0–13 % polysaccharides, namely maize starch, pectin, cellulose and carrageenan, to a final moisture ranging between 40 and 72 %. These mixtures were relevant for high moisture extrusion processing. Rheological data were collected in a closed cavity rheometer, applying small, medium, and large amplitude oscillatory shear. Data from 140 unique formulations were subjected to cluster analysis to identify patterns in the dataset and variable importance analysis to identify key input features and relevant output rheological parameters. Following, multiple supervised machine learning regression models were evaluated, with single-output Random Forest regression effectively predicting parameters in the linear viscoelastic regime, from compositional inputs, but not parameters in the non-linear regime. Accurate predictions of parameters in the non-linear regime could be obtained using multi-output Random Forest regression, with large deformation parameters as input. The results highlighted the interdependencies existing among rheological parameters, and clearly brought evidence of the strength of using machine learning as a tool to predict the rheological properties of plant-based biopolymer mixes, and to highlight trends in the data which may lead to an increased mechanistic understanding of the effect of composition on the structure formation during high moisture extrusion.
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来源期刊
Food Hydrocolloids
Food Hydrocolloids 工程技术-食品科技
CiteScore
19.90
自引率
14.00%
发文量
871
审稿时长
37 days
期刊介绍: Food Hydrocolloids publishes original and innovative research focused on the characterization, functional properties, and applications of hydrocolloid materials used in food products. These hydrocolloids, defined as polysaccharides and proteins of commercial importance, are added to control aspects such as texture, stability, rheology, and sensory properties. The research's primary emphasis should be on the hydrocolloids themselves, with thorough descriptions of their source, nature, and physicochemical characteristics. Manuscripts are expected to clearly outline specific aims and objectives, include a fundamental discussion of research findings at the molecular level, and address the significance of the results. Studies on hydrocolloids in complex formulations should concentrate on their overall properties and mechanisms of action, while simple formulation development studies may not be considered for publication. The main areas of interest are: -Chemical and physicochemical characterisation Thermal properties including glass transitions and conformational changes- Rheological properties including viscosity, viscoelastic properties and gelation behaviour- The influence on organoleptic properties- Interfacial properties including stabilisation of dispersions, emulsions and foams- Film forming properties with application to edible films and active packaging- Encapsulation and controlled release of active compounds- The influence on health including their role as dietary fibre- Manipulation of hydrocolloid structure and functionality through chemical, biochemical and physical processes- New hydrocolloids and hydrocolloid sources of commercial potential. The Journal also publishes Review articles that provide an overview of the latest developments in topics of specific interest to researchers in this field of activity.
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